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The PyTorch implement of the paper "Super-FAN: Integrated facial landmark localization and super-resolution of real-world low resolution faces in arbitrary poses with GANs"

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Super-FAN Pytorch

The PyTorch implement of Super-FAN. Super-FAN: Integrated facial landmark localization and super-resolution of real-world low resolution faces in arbitrary poses with GANs Based on SRGAN, I altered the code by adopting Super-FAN network structure.

Prerequisites

  • Python 3.6
  • Pytorch 1.0 or newer

Dataset

Use the same dataset of FSRNet.Change the option in Train.py to set the dataset's directory. I am using CelebAHQ-MASK as the training set. The GroundTruth is generated by zllrunning/face-parsing.PyTorch(https://github.com/zllrunning/face-parsing.PyTorch) with pretrained model.

Dataset Link: https://pan.baidu.com/s/1HEECUyKI5GOSrd7NPlm-ow 密码:z2ud

Train and Test

I haved merge the Super-FAN in to the mmsr.I use the mmsr hierarchical to pretrain Super-FAN's Generator.the 3000 of the CelebAHQ-MASK used for train with 212000 iter.

Please read the mmsr for training and testing.

Result

The pretrain model result. The left to right is bicubic interpolation image, high resolution image, SR image without GAN, SR image with GAN._ face0 face3 face8 face14

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The PyTorch implement of the paper "Super-FAN: Integrated facial landmark localization and super-resolution of real-world low resolution faces in arbitrary poses with GANs"

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